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An improved methodology for land-cover classification using artificial neural networks and a decision tree classifier.

机译:一种使用人工神经网络和决策树分类器进行土地覆盖分类的改进方法。

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摘要

Mapping is essential for the analysis of the land and land-cover dynamics, which influence many environmental processes and properties. When creating land-cover maps it is important to minimize error, since error will propagate into later analyses based upon these land cover maps. The reliability of land cover maps derived from remotely sensed data depends upon an accurate classification.; For decades, traditional statistical methods have been applied in land-cover classification with varying degrees of accuracy. One of the most significant developments in the field of land-cover classification using remotely sensed data has been the introduction of Artificial Neural Networks (ANN) procedures.; In this research, Artificial Neural Networks were applied to remotely sensed data of the southwestern Ohio region for land-cover classification. Three variants on traditional ANN-based classifiers were explored here: (1) the use of a customized architecture of the neural network in terms of the input layer for each land-cover class, (2) the use of texture analysis to combine spectral information and spatial information which is essential for urban classes, and (3) the use of decision tree (DT) classification to refine the ANN classification and ultimately to achieve a more reliable land-cover thematic map.; The objective of this research was to prove that a classification based on Artificial Neural Networks (ANN) and decision tree (DT) would outperform by far the National Land Cover Data (NLCD). The NLCD is a land-cover classification produced by a cooperative effort between the United States Geological Survey (USGS) and the United States Environmental Protection Agency (USEPA). In order to achieve this objective, an accuracy assessment was conducted for both NLCD classification and ANN/DT classification. Error matrices resulting from the accuracy assessments provided overall accuracy, accuracy of each class, omission errors, and commission errors for each classification. The overall accuracy for the ANN/DT classification was 85.13%. This accuracy fulfills the United States Geological Survey standards for Anderson classification (Anderson et al. 1976). The overall accuracy for the NLCD was 67.97%.
机译:制图对于分析影响许多环境过程和特性的土地和土地覆盖动态是必不可少的。创建土地覆盖图时,重要的是要尽量减少误差,因为误差将传播到基于这些土地覆盖图的以后的分析中。从遥感数据得出的土地覆盖图的可靠性取决于准确的分类。数十年来,传统的统计方法已以不同的准确度应用于土地覆盖分类。使用遥感数据进行土地覆盖分类领域最重要的发展之一就是引入了人工神经网络(ANN)程序。在这项研究中,将人工神经网络应用于俄亥俄州西南部地区的遥感数据以进行土地覆盖分类。此处探讨了传统基于ANN的分类器的三个变体:(1)在每个土地覆盖类别的输入层方面使用神经网络的自定义架构,(2)使用纹理分析来组合光谱信息以及对城市阶层至关重要的空间信息,以及(3)使用决策树(DT)分类来完善ANN分类并最终获得更可靠的土地覆盖专题图。这项研究的目的是证明,基于人工神经网络(ANN)和决策树(DT)的分类到目前为止要优于国家土地覆盖数据(NLCD)。 NLCD是由美国地质调查局(USGS)和美国环境保护局(USEPA)合作制定的土地覆盖分类。为了实现这一目标,对NLCD分类和ANN / DT分类进行了准确性评估。准确性评估产生的误差矩阵提供了整体准确性,每个类别的准确性,每个类别的遗漏错误和委托错误。 ANN / DT分类的总体准确性为85.13%。该精度满足美国地质调查局对安德森分类的标准(安德森等人,1976年)。 NLCD的整体精度为67.97%。

著录项

  • 作者

    Arellano-Neri, Olimpia.;

  • 作者单位

    University of Cincinnati.;

  • 授予单位 University of Cincinnati.;
  • 学科 Physical Geography.; Geological Survey.; Remote Sensing.
  • 学位 Ph.D.
  • 年度 2004
  • 页码 131 p.
  • 总页数 131
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 自然地理学;遥感技术;
  • 关键词

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